Hi ZRL,
While you are using the same model matrix, the data going into the
model are not the same, so in a sense you are not fitting the same
model. The two-color array data are centered on zero whereas the
single-color array data are all positive. A difference between two
groups is already incorporated into the two-color array data, whereas
there is no difference in the single-color data.
Also, if you agree that expression values between different genes are
not directly comparable, why do you think a single gene's expression
value is comparable to the grand mean of all arrays?!? A single
gene's value could be lower than the grand mean, yet that gene COULD
have more mRNA copies than most other genes with values near the grand
mean!
If you are ABSOLUTELY, POSITIVELY set on doing your analysis in a way
that many of us on the list consider faulty, then subtract the grand
mean from all of your expression values before fitting the model.
This will give you values akin to two-color arrays that incorporate a
difference in expression levels.
Jenny
At 02:29 PM 9/15/2009, zrl wrote:
>Hi Jenny,
>
>I agree that the expression values between different genes are NOT
>directly comparable. That's why I said, a single gene's expression
>value is compared with the grand mean of all the genes expression
value.
>
>I know for single channel it measures the fluorescence
>value/intensity of that probe, and two color array measure the ratio
>of that probe. What I wanted to point out is that when we try to fit
>a limma model, in these two cases (single channel, two channel-ref
>and mut), we all use the same model matrix. (1,1,1,1). Therefore, in
>fact we are fitting the same model. Just don't know how to interpret
>topTable results to separate the over/under expressed genes.
>
>Thank you.
>
>ZRL
>
>
>
>
>On Tue, Sep 15, 2009 at 2:14 PM, Jenny Drnevich
><<mailto:drnevich@illinois.edu>drnevich@illinois.edu> wrote:
>Hi,
>
>It's not necessarily an unfair question to ask "which genes have
>high expression (i.e, many mRNAs) and which genes have low
>expression in this treatment?" However, you cannot get a
>quantitative answer to this using microarrays, because the
>expression values between different genes are NOT directly
>comparable. Different probe sequences have different binding
>efficiencies (among other biases) such that the same number of mRNA
>copies of one gene may not lead to the same measured fluorescence
>value as the same number of mRNA copies as another gene.
>
>You are also confused as to what value is measured on a single-color
>array versus a two-color array. A single color array measures the
>fluorescence value for that probe in that sample, whereas a
>two-color array log ratio value is the ratio of fluorescence values
>for that probe between samples. In your example, the log ratios are
>measuring the ratio of mutant to reference FOR THAT PARTICULAR SPOT,
>not the ratio of the mutant value of that spot to the average of the
>mutant value of all other spots.
>
>I think you could do some sort of qualitative assessment of
>expression level, because a genes with a log2 expression value lower
>than 5 almost certainly have fewer mRNA copies than genes with log2
>expression values over say, 10. However, you cannot do any sort of
>statistical test because the fluorescence values are not directly
>comparable between genes. And finally, in the contest of microarray
>experiments, "differential expression" almost universally means
>differences in levels of ONE gene between TWO groups.
>
>HTH,
>Jenny
>
>
>At 01:17 PM 9/15/2009, zrl wrote:
>Claus,
>
>Thank you for your response. However, at some points, I don't agree
with
>you.
>The differentially expressed genes for just one group, I mean the
genes
>whose average expression levels across the biological replicates
(here 4
>replicates) are over/under the grand mean expression value. I think
it's
>similar as the analysis of identifying the differently expressed
genes in
>experiment of 4 replicates with two color arrays (Cy5 Mut, Cy3 Ref),
which
>you got single log ratios for each gene across 4 biological
replicates. For
>my design, I just measure the absolute expression value(single
channel
>intensity).
>Therefore, when I fit the limma model, it actully evaluate the
average
>expression level(intensity) for each gene across the replicates.
>Of course I may just rank the average intensities from high to low
and
>compare them with mean to get the idea of differently expressed
genes. But I
>believe limma can do better job, since I want not only ranking but
also
>significant level. If the variability is hight among the replicates,
the
>expression level for this gene maybe not reliable even the average is
high
>for this gene. I just try to figure out a way to separate the
over/under
>expressed values.
>
>If I was wrong, please let me know. Thank you.
>
>
>
>On Tue, Sep 15, 2009 at 12:55 PM, Mayer, Claus-Dieter
><<mailto:c.mayer@abdn.ac.uk>c.mayer@abdn.ac.uk>wrote:
>
> > Hi,
> >
> > With only one group you can not speak of "differentially
expressed" and
> > testing, as that assumes that you have at least two different
groups or
> > conditions. The test that you have performed probably just
compares gene
> > expression to zero (a moderated one-sample t-test) and for that
you would
> > expect all genes to be significant.
> >
> > What you (I am guessing) probably mean by "differentially
expressed" is
> > that you are interested to find genes that vary highly between
your 4
> > replicates. To find those the best you can do is to rank the genes
with
> > respect to their variances/standard deviations. But you can't get
a p-value
> > for this, because (unless all values are identical) any gene will
have a
> > variance that is significantly higher than 0.
> >
> > Best Wishes
> >
> > Claus
> >
> > > -----Original Message-----
> > > From:
> <mailto:bioconductor-bounces@stat.math.ethz.ch>bioconductor-
bounces@stat.math.ethz.ch
> [mailto:<mailto:bioconductor->bioconductor-
> > > <mailto:bounces@stat.math.ethz.ch>bounces@stat.math.ethz.ch] On
> Behalf Of zrl
> > > Sent: 15 September 2009 17:18
> > > To: Heidi Dvinge
> > > Cc: bioconductor
> > > Subject: Re: [BioC] question about topTable ranking of limma
> > >
> > > Sorry for the incomplete message, click the send accidentally.
> > >
> > > This analysis is for only one group of 4 biological replicates
such as:
> > > group
> > > array1 a
> > > array2 a
> > > array3 a
> > > array4 a
> > >
> > > I tried to identify the genes which are differently expressed in
group a,
> > > but no other reference groups for comparison. Therefore, even
all the t
> > > statistics are positive.
> > >
> > > Any thoughts? Thanks.
> > >
> > >
> > >
> > > On Tue, Sep 15, 2009 at 11:13 AM, zrl
> <<mailto:zrl1974@gmail.com>zrl1974@gmail.com> wrote:
> > >
> > > > Hi Heidi,
> > > >
> > > > Thank you for your response. Maybe I didn't make my question
very
> > clear.
> > > > This analysis is for only one group of 4 biological replicates
such as:
> > > > group
> > > > array1
> > > >
> > > >
> > > >
> > > >
> > > > On Tue, Sep 15, 2009 at 4:20 AM, Heidi Dvinge
> <<mailto:heidi@ebi.ac.uk>heidi@ebi.ac.uk> wrote:
> > > >
> > > >> Hello,
> > > >> you can just sort the topTable result by the t-statistics
since these
> > > will
> > > >> be either positive or negative, or call it directly with
> <http: sort.by="">sort.by="t"
> > > and
> > > >> then filter for significant p-values.
> > > >>
> > > >> HTH
> > > >> \Heidi
> > > >>
> > > >> On 15 Sep 2009, at 10:05, zrl wrote:
> > > >>
> > > >> Dear List,
> > > >>
> > > >> I have several biological replicates affy arrayes (a simple
one group
> > 4
> > > >> arrayes), and tried to use eBayes to get the differentially
expressed
> > > >> genes.
> > > >> The topTable ranked the genes by B statistics, which mixed
over-
> > > expressed
> > > >> genes and under-expressed genes. My question is how I should
separate
> > > the
> > > >> over and under expressed genes from topTable results. My idea
is to
> > > >> calculate the mean average expressed value/intensities
(extracted from
> > > >> topTable results with using the number of all the genes) and
compare
> > > >> ranked
> > > >> genes with the mean value, if the expressed value is greater
than the
> > > >> mean,
> > > >> I take this gene as over-expressed, otherwise, it's under-
expressed.
> > > >> Since I don't know the underlying implement of topTable or
eBayes, I
> > > want
> > > >> to
> > > >> make sure if my method is right. Or you have some better
ideas.
> > Thanks.
> > > >>
> > > >> [[alternative HTML version deleted]]
> > > >>
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> > > >> Bioconductor mailing list
> > > >>
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> > > >>
https://stat.ethz.ch/mailman/listinfo/bioconductor
> > > >> Search the archives:
> > > >>
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ttp://news.gmane.org/gmane.science.biology.informatics.conductor
> > > >>
> > > >>
> > > >>
> > > >
> > >
> > > [[alternative HTML version deleted]]
> > >
> > > _______________________________________________
> > > Bioconductor mailing list
> > >
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> >
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> > The University of Aberdeen is a charity registered in Scotland, No
> > SC013683.
> >
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>
>Jenny Drnevich, Ph.D.
>
>Functional Genomics Bioinformatics Specialist
>W.M. Keck Center for Comparative and Functional Genomics
>Roy J. Carver Biotechnology Center
>University of Illinois, Urbana-Champaign
>
>330 ERML
>1201 W. Gregory Dr.
>Urbana, IL 61801
>USA
>
>ph: 217-244-7355
>fax: 217-265-5066
>e-mail: <mailto:drnevich@illinois.edu>drnevich@illinois.edu
>
Jenny Drnevich, Ph.D.
Functional Genomics Bioinformatics Specialist
W.M. Keck Center for Comparative and Functional Genomics
Roy J. Carver Biotechnology Center
University of Illinois, Urbana-Champaign
330 ERML
1201 W. Gregory Dr.
Urbana, IL 61801
USA
ph: 217-244-7355
fax: 217-265-5066
e-mail: drnevich@illinois.edu
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